Transfer learning‐based surrogate‐assisted design optimisation of a five‐phase magnet‐shaping PMSM

Abstract Multi‐phase permanent‐magnet synchronous machines (MPMSMs) with high reliability due to sufficient fault‐tolerant capability have considerable potential for transportation electrification applications. Here, an efficient surrogate‐assisted design optimisation method is proposed based on ana...

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Main Authors: Yiming Ma, Jin Wang, Yang Xiao, Libing Zhou, Huilin Kang
Format: Article
Language:English
Published: Wiley 2021-10-01
Series:IET Electric Power Applications
Online Access:https://doi.org/10.1049/elp2.12097
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spelling doaj-71552e38c4aa4c94bb339bef93636ada2021-09-04T14:45:27ZengWileyIET Electric Power Applications1751-86601751-86792021-10-0115101281129910.1049/elp2.12097Transfer learning‐based surrogate‐assisted design optimisation of a five‐phase magnet‐shaping PMSMYiming Ma0Jin Wang1Yang Xiao2Libing Zhou3Huilin Kang4State Key Laboratory of Advanced Electromagnetic Engineering and Technology School of Electrical and Electronic Engineering Huazhong University of Science and Technology Wuhan ChinaState Key Laboratory of Advanced Electromagnetic Engineering and Technology School of Electrical and Electronic Engineering Huazhong University of Science and Technology Wuhan ChinaDepartment of Electronic and Electrical Engineering University of Sheffield Sheffield UKState Key Laboratory of Advanced Electromagnetic Engineering and Technology School of Electrical and Electronic Engineering Huazhong University of Science and Technology Wuhan ChinaTongda Electromagnetic Energy Co., Ltd Changsha ChinaAbstract Multi‐phase permanent‐magnet synchronous machines (MPMSMs) with high reliability due to sufficient fault‐tolerant capability have considerable potential for transportation electrification applications. Here, an efficient surrogate‐assisted design optimisation method is proposed based on analytical model transfer learning for torque characteristic optimisation of a five‐phase magnet‐shaping PMSM. By employing transfer learning of the source domain analytical model data and the target domain finite element analysis (FEA) data in surrogate model training, the proposed method can achieve both high accuracy and high efficiency from the merits of FEA‐ and analytical‐based optimisations, respectively. The studied machine with five‐phases and harmonic injected surface‐mounted PMs to enable harmonic injection for torque capability improvement is introduced and the analytical model is built based on the segmented PM and the complex conformal mapping methods. Besides, the optimal Latin hypercube design (LHD) and Taguchi methods are used to form the source and target domain datasets, respectively, so that data features can be efficiently captured over a wide range of optimisation variables. An optimal design is obtained by multi‐objective optimisation using the trained surrogate model, which is prototyped and measured to validate the proposed method.https://doi.org/10.1049/elp2.12097
collection DOAJ
language English
format Article
sources DOAJ
author Yiming Ma
Jin Wang
Yang Xiao
Libing Zhou
Huilin Kang
spellingShingle Yiming Ma
Jin Wang
Yang Xiao
Libing Zhou
Huilin Kang
Transfer learning‐based surrogate‐assisted design optimisation of a five‐phase magnet‐shaping PMSM
IET Electric Power Applications
author_facet Yiming Ma
Jin Wang
Yang Xiao
Libing Zhou
Huilin Kang
author_sort Yiming Ma
title Transfer learning‐based surrogate‐assisted design optimisation of a five‐phase magnet‐shaping PMSM
title_short Transfer learning‐based surrogate‐assisted design optimisation of a five‐phase magnet‐shaping PMSM
title_full Transfer learning‐based surrogate‐assisted design optimisation of a five‐phase magnet‐shaping PMSM
title_fullStr Transfer learning‐based surrogate‐assisted design optimisation of a five‐phase magnet‐shaping PMSM
title_full_unstemmed Transfer learning‐based surrogate‐assisted design optimisation of a five‐phase magnet‐shaping PMSM
title_sort transfer learning‐based surrogate‐assisted design optimisation of a five‐phase magnet‐shaping pmsm
publisher Wiley
series IET Electric Power Applications
issn 1751-8660
1751-8679
publishDate 2021-10-01
description Abstract Multi‐phase permanent‐magnet synchronous machines (MPMSMs) with high reliability due to sufficient fault‐tolerant capability have considerable potential for transportation electrification applications. Here, an efficient surrogate‐assisted design optimisation method is proposed based on analytical model transfer learning for torque characteristic optimisation of a five‐phase magnet‐shaping PMSM. By employing transfer learning of the source domain analytical model data and the target domain finite element analysis (FEA) data in surrogate model training, the proposed method can achieve both high accuracy and high efficiency from the merits of FEA‐ and analytical‐based optimisations, respectively. The studied machine with five‐phases and harmonic injected surface‐mounted PMs to enable harmonic injection for torque capability improvement is introduced and the analytical model is built based on the segmented PM and the complex conformal mapping methods. Besides, the optimal Latin hypercube design (LHD) and Taguchi methods are used to form the source and target domain datasets, respectively, so that data features can be efficiently captured over a wide range of optimisation variables. An optimal design is obtained by multi‐objective optimisation using the trained surrogate model, which is prototyped and measured to validate the proposed method.
url https://doi.org/10.1049/elp2.12097
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AT yangxiao transferlearningbasedsurrogateassisteddesignoptimisationofafivephasemagnetshapingpmsm
AT libingzhou transferlearningbasedsurrogateassisteddesignoptimisationofafivephasemagnetshapingpmsm
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